An Expert Knowledge-Based System to Evaluate the Efficiency of Dry Construction Methods
Abstract
:1. Introduction
2. Materials and Method
2.1. The Construction Software CENKROS 4 and Available Knowledge Systems of Dry Construction Systems and Techniques
2.2. The Knowledge Base of Dry Construction Systems and Techniques (DCSTs) and Wet Construction Systems and Techniques (WCSTs)
2.3. The Development of the Knowledge System of Systems and Technologies for Finishing Construction Works
- M1—model consisting only of wet construction systems and techniques;
- M2—model consisting only of dry construction systems and techniques;
- M3—model consisting of various combinations of dry and wet finishing works.
3. Results
3.1. The Complex COMBINATOR—The Knowledge System on Systems and Techniques of Finishing Works
3.2. Simulations of the Effects of DCST and WCST Applications on Construction Cost and Construction Time of the Projects
3.2.1. Simulations of the Effects of WCST
3.2.2. Simulations of the Effects of DCST
3.2.3. Simulations of the Effects of Combinations of DCSTs and WCSTs
3.3. The Analysis of the Dry Construction Potential in Finishing Construction Works
3.4. Optimization-Based Selection of Systems and Techniques of Finishing Works
- Variant V1: the client is hesitative—50% construction time and 50% construction cost;
- Variant V2: the client prefers a shorter construction time—70% construction time and 30% construction cost;
- Variant V3: the client prefers a lower construction cost—20% construction time and 80% construction cost.
- Variant V1 (50%/50%)—dry construction is comparable and competitive with wet construction, a slight advantage of dry construction;
- Variant V2 (70%/30%)—the potential of dry construction due to the advantage of a short construction time is clearly confirmed;
- Variant V3 (20%/80%)—the advantage of combinations of only wet construction systems and techniques has been proven, but apart from the most advantageous four combinations, the dry construction could be regarded as comparable and competitive.
- If the weight of the “construction time” criterion is in the interval from 0% to 25% and the weight of the “cost” criterion is in the interval from 75% to 100%, wet construction is more advantageous;
- If the weight of the “construction time” criterion is in the interval from 25% to 55%, and therefore the weight of the “cost” criterion is in the interval from 45% to 75%, the dry and wet construction methods are comparable and competitive;
- If the weight of the “construction time” criterion is in the interval from 55% to 100%, and therefore the weight of the “cost” criterion is from 0% to 45%, dry construction is more advantageous.
4. Discussion and Conclusions
- A complete set of dry and wet construction systems and techniques for finishing works (partitions, ceilings, wall finishes, and floors) was developed. The knowledge base prepared by us includes characteristics and information on structural, cost, and time parameters, which can help clients in making decisions and choosing a system and technique, designers in the processing and design of project documentation, and contractors in the implementation of finishing processes.
- The inference engine of the knowledge system allows different combinations of dry and wet systems and techniques for finishing processes to be simulated and thus examine the effects in the area of cost and time parameters.
- For simulating the effects of systems and techniques of finishing works in terms of costs, construction time, and weight, thereby demonstrating the benefits, or restrictions on selected combinations of DCSTs and WCSTs;
- The improvement of the demonstration of the advantages of dry construction and automatic comparisons. It will bring a decisive criterion for the selection of the system and technique, and to more effectively design systems and techniques of finishing works in terms of cost, construction time, and structural weight;
- For enhanced understanding and knowledge of the systems and techniques of the finishing works from the designers’ side when consulting with clients, a more effective evaluation of the finishing works in the budgeting office, and a better acquisition of the technological procedures and planning for the execution of the order for the contractor;
- Programmers and developers of the CENKROS 4 construction software to reconsider the creation of a similar tool (module) that could simulate and vary selected construction systems and techniques.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Data Group | Data |
---|---|
General data on dry and wet construction systems and techniques | Type of system or technique; |
Name (description) of the system or technique; | |
System or technique number of the 3D library classified by the manufacturer; | |
Code of the system or technique in CENEKON price list databases. | |
Basic parameters | Unit labor intensity [Nh/u.m.]; |
Length of technological break; | |
Unit price (including costs, overheads, and profit); | |
Unit weight of the system/structure. |
General Data | Basic Parameters | ||||||
---|---|---|---|---|---|---|---|
Type of DCST | Description | ID Number (3D) | CENKROS 4 Code | Labor Intensity [Nh/m2] | TB [day] | Cost [EUR/m2] | Weight [t/m2] |
DPs | Plasterboard partition wall th. 75 mm one-side sheathed with RB 12.5 mm boards, CW 50 | 3.40.01a | 763115100 | 0.915 | 1 | 25.27 | 0.022 |
DPs | Plasterboard partition wall th. 75 mm one-side sheathed with RF 12.5 mm boards, CW 50 | 3.40.01b | 763115101 | 0.919 | 1 | 26.45 | 0.025 |
DPs | Plasterboard partition wall th. 75 mm one-side sheathed with RBI 12.5 mm boards, CW 50 | 3.40.01c | 763115102 | 0.923 | 1 | 28.13 | 0.022 |
DPs | Plasterboard partition wall th. 75 mm one-side sheathed with RFI 12.5 mm boards, CW 50 | 3.40.01b(f) | 763115103 | 0.923 | 1 | 29.37 | 0.031 |
DPs | Plasterboard partition wall th. 75 mm one-side sheathed with RB 12.5 mm boards including thermal insulation, CW 50 | 3.40.01b(a) | 763115111 | 0.918 | 1 | 28.00 | 0.023 |
DPs | Plasterboard partition wall th. 100 mm one-side sheathed with RB 12.5 mm boards including thermal insulation, CW 75 | 3.40.02(a) | 763115112 | 0.919 | 1 | 30.15 | 0.023 |
DPs | Plasterboard partition wall th. 125 mm one-side sheathed with RB 12.5 mm boards including thermal insulation, CW 100 | 3.40.03(a) | 763115113 | 0.921 | 1 | 32.04 | 0.024 |
DPs | Plasterboard partition wall th. 100 mm one-side sheathed with RB 12.5 mm boards, CW 75 | 3.40.02(b) | 763115120 | 0.915 | 1 | 26.08 | 0.022 |
DPs | Plasterboard partition wall th. 100 mm one-side sheathed with RF12.5 mm boards, CW 75 | 3.40.02(c) | 763115121 | 0.919 | 1 | 27.25 | 0.025 |
General Data | Basic Parameters | ||||||
---|---|---|---|---|---|---|---|
Type of WCST | Description | ID Number (3D) | CENKROS 4 Code | Labor Intensity [Nh/m2] | TB [day] | Cost [EUR/m2] | Weight [t/m2] |
WMPs | Partitions made of fired bricks POROTHERM 8 P 8, on mortar POROTHERM MM 50 (80 × 500 × 238) | - | 342242020 | 0.509 | 3 | 21.386 | 0.08465 |
WMPs | Partitions made of fired bricks POROTHERM 11.5 P 8, on mortar POROTHERM MM 50 (115 × 500 × 238) | - | 342242021 | 0.552 | 3 | 24.513 | 0.10942 |
WMPs | Partitions made of fired bricks POROTHERM 14 P 8, on mortar POROTHERM MM 50 (140 × 500 × 238) | - | 342242022 | 0.616 | 3 | 28.095 | 0.14810 |
WMPs | Partitions made of fired bricks POROTHERM 17.5 P 12, on mortar POROTHERM MM 50 (175 × 375 × 238) | - | 342242023 | 0.699 | 3 | 34.457 | 0.17541 |
WMPs | Partitions made of fired bricks POROTHERM 8 Profi P 8, on POROTHERM Profi mortar (80 × 500 × 249) | - | 342242030 | 0.449 | 3 | 21.345 | 0.07171 |
WMPs | Partitions made of fired bricks POROTHERM 11.5 Profi P 8, on POROTHERM Profi mortar (115 × 500 × 249) | - | 342242031 | 0.483 | 3 | 25.768 | 0.09683 |
WMPs | Partitions made of fired bricks POROTHERM 14 Profi P 8, on POROTHERM Profi mortar (140 × 500 × 249) | - | 342242032 | 0.504 | 3 | 29.123 | 0.10626 |
WMPs | Partitions made of fired bricks POROTHERM 17.5 Profi P 12, on POROTHERM Profi mortar (175 × 375 × 249) | - | 342242033 | 0.529 | 3 | 37.699 | 0.14075 |
Model | Combinations of Finishing Works Systems and Techniques | Sequence of Works in Implementation | ||||
---|---|---|---|---|---|---|
Partitions | Ceilings | Plasters (Wall Finishes) | Floors | |||
M1 | WMP | CP | WP | WF | PW | WMP-TB-CP-TB-WP-TB-WF-TB |
M2 | DP | SC | DL | DS | PD | DP-TB-DL-TB-SC-TB-DS-TB |
M3 | WMP | CP | WP | DS | P1 | WMP-TB-CP-TB-WP-TB-DS-TB |
WMP | CP | DL | WF | P2 | WMP-TB-CP-TB-WF-TB-DL-TB | |
WMP | SC | WP | WF | P3 | WMP-TB-WP-TB-WF-TB-SC-TB | |
DP | CP | WP | WF | P4 | CP-TB-WP-TB-WF-TB-DP-TB | |
WMP | CP | DL | DS | P5 | WMP-TB-CP-TB-DL-TB-DS-TB | |
WMP | SC | WP | DS | P6 | WMP-TB-WP-TB-SC-TB-DS-TB | |
DP | CP | WP | DS | P7 | CP-TB-WP-TB-DP-TB-DS-TB | |
WMP | SC | DL | WF | P8 | WMP-TB-WF-TB-DL-TB-SC-TB | |
DP | SC | WP | WF | P9 | WP-TB-WF-TB-DP-TB-SC-TB | |
DP | CP | DL | WF | P10 | CP-TB-WF-TB-DP-TB-DL-TB | |
WMP | SC | DL | DS | P11 | WMP-TB-DL-TB-SC-TB-DS-TB | |
DP | SC | DL | WF | P12 | WF-TB-DP-TB-DL-TB-SC-TB | |
DP | SC | WP | DS | P13 | WP-TB-DP-TB-SC-TB-DS-TB | |
DP | CP | DL | DS | P14 | CP-TB-DP-TB-DL-TB-DS-TB |
Type of Finishing Work | Number | Type of Finishing Work | Number |
---|---|---|---|
Wet masonry partition (WMP) | 107 | Drywall partition (DP) | 315 |
Ceiling plaster (CP) | 248 | Suspended ceiling (SC) | 140 |
Wall plaster (WP) | 236 | Dry lining (DL) | 103 |
Wet floor (WF) | 207 | Dry screed (DS) | 62 |
Total | 798 | Total | 620 |
Building | The Average Quantities of Finishing Works [m2] | ||||
---|---|---|---|---|---|
Residential Building | Living Area [m2] | Partitions | Ceilings | Plasters (Walls and Partitions) | Floors |
1-room apartment | 35 | 10 | 35 | 55/35 * | 35 |
2-room apartment | 55 | 25 | 55 | 100/50 * | 55 |
3-room apartment | 75 | 40 | 75 | 140/60 * | 75 |
Single-storied family house FH 150 ** | 125 | 90 | 125 | 225/90 * | 125 |
Two-storied family house FH 70 ** | 100 | 80 | 100 | 260/105 * | 100 |
Two-storied family house FH 100 ** | 150 | 100 | 150 | 300/120 * | 150 |
Summary—FH 70 | Total Construction Cost | Total Labor Intensity | Total Construction Time | Total Weight | |
---|---|---|---|---|---|
Combinations | EUR | Nhs | Day | t | |
M1/1 | WMP-TB-CP-TB-WP-TB-WF-TB | 9846.34 | 260.413 | 104 | 28.879 |
M1/2 | WMP-TB-CP-TB-WP-TB-WF-TB | 9662.56 | 239.290 | 91 | 30.648 |
M1/3 | WMP-TB-CP-TB-WP-TB-WF-TB | 8102.02 | 214.919 | 86 | 26.254 |
M1/4 | WMP-TB-CP-TB-WP-TB-WF-TB | 10,948.90 | 247.090 | 102 | 31.704 |
M1/5 | WMP-TB-CP-TB-WP-TB-WF-TB | 9862.96 | 270.620 | 108 | 35.262 |
M1/6 | WMP-TB-CP-TB-WP-TB-WF-TB | 9450.30 | 200.278 | 84 | 22.697 |
M1/7 | WMP-TB-CP-TB-WP-TB-WF-TB | 8090.66 | 191.472 | 73 | 23.828 |
M1/8 | WMP-TB-CP-TB-WP-TB-WF-TB | 10,844.64 | 248.044 | 108 | 37.472 |
M1/9 | WMP-TB-CP-TB-WP-TB-WF-TB | 8926.98 | 256.640 | 99 | 30.618 |
M1/10 | WMP-TB-CP-TB-WP-TB-WF-TB | 8641.12 | 211.822 | 91 | 22.395 |
M1P | Average | 9437.65 | 234.06 | 95 | 28.98 |
Summary—FH 70 | Total Construction Cost | Total Labor Intensity | Total Construction Time | Total Weight | |
---|---|---|---|---|---|
Combinations | EUR | Nhs | Day | t | |
M2/1 | DP-TB-DL-TB-SC-TB-DS-TB | 9805.21 | 338.634 | 39 | 7.716 |
M2/2 | DP-TB-DL-TB-SC-TB-DS-TB | 10,023.45 | 338.872 | 39 | 7.780 |
M2/3 | DP-TB-DL-TB-SC-TB-DS-TB | 10,870.41 | 339.024 | 39 | 7.884 |
M2/4 | DP-TB-DL-TB-SC-TB-DS-TB | 11,484.17 | 337.618 | 37 | 8.158 |
M2/5 | DP-TB-DL-TB-SC-TB-DS-TB | 10,278.25 | 339.969 | 39 | 8.397 |
M2/6 | DP-TB-DL-TB-SC-TB-DS-TB | 9698.48 | 329.888 | 38 | 8.117 |
M2/7 | DP-TB-DL-TB-SC-TB-DS-TB | 10,441.24 | 344.639 | 39 | 8.658 |
M2/8 | DP-TB-DL-TB-SC-TB-DS-TB | 11,588.01 | 389.940 | 44 | 9.593 |
M2/9 | DP-TB-DL-TB-SC-TB-DS-TB | 11,107.75 | 322.227 | 36 | 7.498 |
M2/10 | DP-TB-DL-TB-SC-TB-DS-TB | 11,287.18 | 341.346 | 37 | 8.026 |
M2P | Average | 10,658.42 | 342.22 | 39 | 8.18 |
Summary—FH 70 | Total Construction Cost | Total Labor Intensity | Total Construction Time | Total Weight | |
---|---|---|---|---|---|
Combinations | EUR | Nhs | Day | t | |
M3/1 | WMP-TB-CP-TB-WP-TB-DS-TB | 9469.60 | 284.838 | 61 | 16.577 |
M3/2 | WMP-TB-CP-TB-WF-TB-DL-TB | 9300.98 | 296.614 | 83 | 24.503 |
M3/3 | WMP-TB-WP-TB-WF-TB-SC-TB | 11,795.82 | 235.833 | 78 | 26.771 |
M3/4 | CP-TB-WP-TB-WF-TB-DP-TB | 6697.85 | 201.912 | 78 | 16.879 |
M3/5 | WMP-TB-CP-TB-DL-TB-DS-TB | 10,136.64 | 370.903 | 52 | 16.569 |
M3/6 | WMP-TB-WP-TB-SC-TB-DS-TB | 10,072.58 | 330.630 | 58 | 20.166 |
M3/7 | CP-TB-WP-TB-DP-TB-DS-TB | 7807.01 | 254.158 | 53 | 8.789 |
M3/8 | WMP-TB-WF-TB-DL-TB-SC-TB | 9661.06 | 322.923 | 72 | 19.340 |
M3/9 | WP-TP-WF-TP-DP-TB-SC-TB | 7854.58 | 229.957 | 77 | 15.653 |
M3/10 | CP-TB-WF-TB-DP-TB-DL-TB | 7185.04 | 237.509 | 84 | 18.008 |
M3/11 | WMP-TB-DL-TB-SC-TB-DS-TB | 11,969.74 | 419.298 | 51 | 17.894 |
M3/12 | WF-TB-DP-TB-DL-TB-SC-TB | 8486.34 | 269.015 | 63 | 16.437 |
M3/13 | CP-TB-DP-TB-SC-TB-DS-TB | 10,340.61 | 321.533 | 47 | 10.236 |
M3/14 | CP-TB-DP-TB-DL-TB-DS-TB | 9249.14 | 293.550 | 47 | 9.700 |
M3P | Average | 9287.64 | 290.62 | 60 | 15.28 |
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Kozlovska, M.; Duris, A.; Strukova, Z.; Tazikova, A. An Expert Knowledge-Based System to Evaluate the Efficiency of Dry Construction Methods. Appl. Sci. 2023, 13, 11741. https://doi.org/10.3390/app132111741
Kozlovska M, Duris A, Strukova Z, Tazikova A. An Expert Knowledge-Based System to Evaluate the Efficiency of Dry Construction Methods. Applied Sciences. 2023; 13(21):11741. https://doi.org/10.3390/app132111741
Chicago/Turabian StyleKozlovska, Maria, Adrian Duris, Zuzana Strukova, and Alena Tazikova. 2023. "An Expert Knowledge-Based System to Evaluate the Efficiency of Dry Construction Methods" Applied Sciences 13, no. 21: 11741. https://doi.org/10.3390/app132111741
APA StyleKozlovska, M., Duris, A., Strukova, Z., & Tazikova, A. (2023). An Expert Knowledge-Based System to Evaluate the Efficiency of Dry Construction Methods. Applied Sciences, 13(21), 11741. https://doi.org/10.3390/app132111741